Improving the calibration of the best member method using quantile regression to forecast extreme temperatures

Temperature influences both the demand and supply of electricity and is therefore a potential cause of blackouts. Like any electricity provider, Electricité de France (EDF) has strong incentives to model the uncertainty in future temperatures using ensemble prediction systems (EPSs). However, the pr...

Full description

Bibliographic Details
Main Authors: A. Gogonel, J. Collet, A. Bar-Hen
Format: Article
Language:English
Published: Copernicus Publications 2013-05-01
Series:Natural Hazards and Earth System Sciences
Online Access:http://www.nat-hazards-earth-syst-sci.net/13/1161/2013/nhess-13-1161-2013.pdf
id doaj-aadada53fbbf44f19f131a6f9b685a13
record_format Article
spelling doaj-aadada53fbbf44f19f131a6f9b685a132020-11-24T23:43:59ZengCopernicus PublicationsNatural Hazards and Earth System Sciences1561-86331684-99812013-05-011351161116810.5194/nhess-13-1161-2013Improving the calibration of the best member method using quantile regression to forecast extreme temperaturesA. GogonelJ. ColletA. Bar-HenTemperature influences both the demand and supply of electricity and is therefore a potential cause of blackouts. Like any electricity provider, Electricité de France (EDF) has strong incentives to model the uncertainty in future temperatures using ensemble prediction systems (EPSs). However, the probabilistic representations of the future temperatures provided by EPSs are not reliable enough for electricity generation management. This lack of reliability becomes crucial for extreme temperatures, as these extreme temperatures can result in blackouts. A proven method to solve this problem is the best member method (BMM). This method improves the representation as a whole, but there is still room for improvement in the tails of the distribution. The idea of the BMM is to model the probability distribution of the difference between the forecast and realization. We improve the error modeling in BMM using quantile regression, which is more efficient than the usual two-stage ordinary least squares (OLS) regression. To achieve further improvement, the probability that a given forecast is the best one can be modeled using exogenous variables.http://www.nat-hazards-earth-syst-sci.net/13/1161/2013/nhess-13-1161-2013.pdf
collection DOAJ
language English
format Article
sources DOAJ
author A. Gogonel
J. Collet
A. Bar-Hen
spellingShingle A. Gogonel
J. Collet
A. Bar-Hen
Improving the calibration of the best member method using quantile regression to forecast extreme temperatures
Natural Hazards and Earth System Sciences
author_facet A. Gogonel
J. Collet
A. Bar-Hen
author_sort A. Gogonel
title Improving the calibration of the best member method using quantile regression to forecast extreme temperatures
title_short Improving the calibration of the best member method using quantile regression to forecast extreme temperatures
title_full Improving the calibration of the best member method using quantile regression to forecast extreme temperatures
title_fullStr Improving the calibration of the best member method using quantile regression to forecast extreme temperatures
title_full_unstemmed Improving the calibration of the best member method using quantile regression to forecast extreme temperatures
title_sort improving the calibration of the best member method using quantile regression to forecast extreme temperatures
publisher Copernicus Publications
series Natural Hazards and Earth System Sciences
issn 1561-8633
1684-9981
publishDate 2013-05-01
description Temperature influences both the demand and supply of electricity and is therefore a potential cause of blackouts. Like any electricity provider, Electricité de France (EDF) has strong incentives to model the uncertainty in future temperatures using ensemble prediction systems (EPSs). However, the probabilistic representations of the future temperatures provided by EPSs are not reliable enough for electricity generation management. This lack of reliability becomes crucial for extreme temperatures, as these extreme temperatures can result in blackouts. A proven method to solve this problem is the best member method (BMM). This method improves the representation as a whole, but there is still room for improvement in the tails of the distribution. The idea of the BMM is to model the probability distribution of the difference between the forecast and realization. We improve the error modeling in BMM using quantile regression, which is more efficient than the usual two-stage ordinary least squares (OLS) regression. To achieve further improvement, the probability that a given forecast is the best one can be modeled using exogenous variables.
url http://www.nat-hazards-earth-syst-sci.net/13/1161/2013/nhess-13-1161-2013.pdf
work_keys_str_mv AT agogonel improvingthecalibrationofthebestmembermethodusingquantileregressiontoforecastextremetemperatures
AT jcollet improvingthecalibrationofthebestmembermethodusingquantileregressiontoforecastextremetemperatures
AT abarhen improvingthecalibrationofthebestmembermethodusingquantileregressiontoforecastextremetemperatures
_version_ 1725500598216818688